识别脑电图癫痫脑网络的重要区域。

Nantia D. Iakovidou, Manolis Christodoulakis, E. Papathanasiou, S. Papacostas, G. Mitsis
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引用次数: 0

摘要

人脑被称为已知宇宙中最复杂的物体,在许多方面,它构成了科学的最后前沿。近年来,人们利用脑电图(EEG)信号将人脑的功能连接视为一个复杂的网络进行研究。这意味着大脑是作为一个连接的系统来研究的,其中节点代表不同的专门的大脑区域,链接或连接代表节点之间的通信途径。图论提供了多种有效建模、分析和研究脑电图网络的方法、方法和工具。在本文中,我们研究加权和全连接的大脑网络,从长期记录的脑电图测量中创建,涉及局灶性和全面性癫痫患者。我们专注于使用著名的特征向量中心性度量,它显示了网络中节点的影响,也构成了著名的Google的PageRank算法的基础。我们的新方法揭示了可能在每次癫痫发作发生前发挥重要作用的大脑区域,以及可能构成癫痫发作期间人类大脑异常电活动种子的大脑区域。最后,我们提出并讨论了我们的方法的结果和结论,它展示了在记录期间的特定阶段的标准脑电图行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying important regions in EEG epilepsy brain networks.
The human brain has been called the most complex object in the known universe and in many ways it constitutes the final frontier of science. Lately, the functional connectivity in human brain has been regarded and studied as a complex network using electroencephalography (EEG) signals. This means that the brain is studied as a connected system, where nodes represent different specialized brain regions and links or connections, represent communication pathways between the nodes. It is also fairly established that graph theory provides a variety of measures, methods and tools that can be useful to efficiently model, analyze and study an EEG network. In this article we study weighted and fully-connected brain networks, created from long-recorded EEG measurements that concern patients with focal and generalized epilepsy. We focus on the use of the well-known eigenvector centrality measure, which shows the influence of a node in a network and also constitutes the basis of the famous Google's PageRank algorithm. Our novel methodology reveals brain regions that might play a significant role before the occurrence of each epileptic seizure and also brain areas that might constitute the seed of the abnormal electrical activity that the human brain presents during epileptic seizures. Finally, we present and discuss the results and conclusions of our methodology, which demonstrates a standard EEG behavior in particular phases of the recording period.
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